首页> 外文会议>ASME turbo expo: turbine technical conference and exposition >A COMPARATIVE STUDY OF CONTRASTING MACHINE LEARNING FRAMEWORKS APPLIED TO RANS MODELING OF JETS IN CROSSFLOW
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A COMPARATIVE STUDY OF CONTRASTING MACHINE LEARNING FRAMEWORKS APPLIED TO RANS MODELING OF JETS IN CROSSFLOW

机译:逆流射流​​建模中的对比学习框架的比较研究。

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Classical RANS turbulence models have known deficiencies when applied to jets in crossflow. Identifying the linear Boussi-nesq stress-strain hypothesis as a major contribution to erroneous prediction, we consider and contrast two machine learning frameworks for turbulence model development. Gene Expression Programming, an evolutionary algorithm that employs a survival of the fittest analogy, and a Deep Neural Network, based on neurological processing, add non-linear terms to the stress-strain relationship. The results are Explicit Algebraic Stress Model-like closures. High fidelity data from an inline jet in crossflow study is used to regress new closures. These models are then tested on a skewed jet to ascertain their predictive efficacy. For both methodologies, a vast improvement over the linear relationship is observed.
机译:古典rans湍流模型在跨越跨流量的喷射时具有已知的缺陷。识别线性Boussi-nesq应力 - 应变假设作为错误预测的主要贡献,我们考虑并对比两种机器学习框架进行湍流模型开发。基因表达编程,一种进化算法,用于基于神经处理的最适合的类比和深神经网络的生存,为应力 - 应变关系添加非线性术语。结果是明确的代数压力模型封闭物。来自Crossflow研究中的内联射流的高保真数据用于退出新闭包。然后在偏斜射流上测试这些模型以确定其预测功效。对于两种方法,观察到对线性关系的巨大改进。

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